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Dynamic, variable, constantly changing these are words often iterated in agricultural discussions. They are the antithesis to crop yield predictability and with good reason. In the field of precision agriculture where farmers and businesses attempt to improve margins and predict yields, nature’s rain, wind, humidity, storms, droughts, plagues, etc. act as impediments to generating accurate predictions. In a world where just-in-time is still too slow, predicting the future is key to staying alive and meeting demands.
Precision agriculture experts and data scientists have been modeling Ag predictions for the past two plus decades with mixed results and less than ideal accuracy because of the variability of nature. Variability in predictive modeling can pose significant challenges that require careful consideration and management to ensure that the model is accurate and effective. Models have improved accuracy and more recently, AI has made inroads to those improvements by addressing the key modeling factors of data and reprocessing. AI-powered tools can help clean and preprocess data to ensure that it is of high quality and ready for use in predictive modeling. These tools can detect and correct errors, fill in missing values, and identify outliers that may skew results. These tools often require Ag experts and data scientists to rely on IT to build server and storage infrastructures and later maintain and support the highly technical environments. As the public cloud companies strive to attract more business, specializations in cloud-based IA for precision Ag have made strides to enhance modeling making it less IT driven and afford more control and independence to the Ag teams, the end-users. Other key business benefits of the clouds are: Scalability: Cloud computing offers virtually unlimited computing resources, which can be scaled up or down as needed to accommodate the demands of the AI-powered predictive modeling process. This makes it possible to process large volumes of data quickly and efficiently, and to train complex models that may not be feasible with traditional computing resources.Cloud computing-based AI can offer significant enhancement by addressing the challenges of variability in predictive modeling, including scalability, cost-effectiveness, accessibility, security, and integration